Many to Many
"Many-to-many" relationships, where multiple inputs map to multiple outputs, are a central challenge across diverse machine learning domains. Current research focuses on developing models and algorithms that effectively handle this complexity, often employing techniques like bi-directional embedding alignment, hybrid relation assignment, and disentangled learning to improve performance in tasks such as multilingual translation, image-text retrieval, and molecular property prediction. These advancements are crucial for improving the robustness and accuracy of AI systems in real-world applications characterized by inherent ambiguity and variability, leading to more efficient and reliable solutions.
Papers
October 17, 2022
June 5, 2022
April 26, 2022
April 8, 2022
April 7, 2022